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Patient scheduling based on a service-time prediction model: a data-driven study for a radiotherapy center

  • Dina Bentayeb
  • Nadia Lahrichi
  • Louis-Martin Rousseau
Article
  • 111 Downloads

Abstract

With the growth of the population, access to medical care is in high demand, and queues are becoming longer. The situation is more critical when it concerns serious diseases such as cancer. The primary problem is inefficient management of patients rather than a lack of resources. In this work, we collaborate with the Centre Intégré de Cancérologie de Laval (CICL). We present a data-driven study based on a nonblock approach to patient appointment scheduling. We use data mining and regression methods to develop a prediction model for radiotherapy treatment duration. The best model is constructed by a classification and regression tree; its accuracy is 84%. Based on the predicted duration, we design new workday divisions, which are evaluated with various patient sequencing rules. The results show that with our approach, 40 additional patients are treated daily in the cancer center, and a considerable improvement is noticed in patient waiting times and technologist overtime.

Keywords

Patient scheduling Data-driven approach Prediction models Nonblock scheduling Grid design Sequencing rules 

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Copyright information

© Springer Science+Business Media, LLC, part of Springer Nature 2018

Authors and Affiliations

  1. 1.Ecole Polytechnique de MontréalMontréalCanada

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